2025-05-20 16:46:55 +08:00
"""
Summary : A config for AIME - 2025 Evaluation .
Setting :
Shot : 0 - shot
Evaluator :
- CascadeEvaluator
- MATHVerifyEvaluator
- GenericLLMEvaluator
Repeat : 1
Avaliable Models :
- Instruct / Chat Models
"""
2025-01-07 00:14:32 +08:00
from opencompass . openicl . icl_prompt_template import PromptTemplate
from opencompass . openicl . icl_retriever import ZeroRetriever
from opencompass . openicl . icl_inferencer import GenInferencer
2025-05-20 16:46:55 +08:00
from opencompass . datasets import CustomDataset
2025-01-07 00:14:32 +08:00
from opencompass . datasets import generic_llmjudge_postprocess
2025-05-20 16:46:55 +08:00
from opencompass . evaluator import (
CascadeEvaluator ,
GenericLLMEvaluator ,
MATHVerifyEvaluator
2025-01-07 00:14:32 +08:00
)
2025-05-20 16:46:55 +08:00
aime2025_reader_cfg = dict ( input_columns = [ ' question ' ] , output_column = ' answer ' )
2025-01-07 00:14:32 +08:00
2025-05-20 16:46:55 +08:00
aime2025_infer_cfg = dict (
2025-01-07 00:14:32 +08:00
prompt_template = dict (
type = PromptTemplate ,
template = dict (
round = [
2025-05-20 16:46:55 +08:00
dict (
role = ' HUMAN ' ,
prompt = ' {question} \n Remember to put your final answer within \\ boxed {} . ' ,
) ,
2025-01-07 00:14:32 +08:00
] ,
2025-05-20 16:46:55 +08:00
) ,
2025-01-07 00:14:32 +08:00
) ,
retriever = dict ( type = ZeroRetriever ) ,
2025-05-20 16:46:55 +08:00
inferencer = dict ( type = GenInferencer ) ,
2025-01-07 00:14:32 +08:00
)
GRADER_TEMPLATE = """
Please as a grading expert , judge whether the final answers given by the candidates below are consistent with the standard answers , that is , whether the candidates answered correctly .
Here are some evaluation criteria :
1. Please refer to the given standard answer . You don ' t need to re-generate the answer to the question because the standard answer has been given. You only need to judge whether the candidate ' s answer is consistent with the standard answer according to the form of the question . Don ' t try to answer the original question. You can assume that the standard answer is definitely correct.
2. Because the candidate ' s answer may be different from the standard answer in the form of expression, before making a judgment, please understand the question and the standard answer first, and then judge whether the candidate ' s answer is correct , but be careful not to try to answer the original question .
3. Some answers may contain multiple items , such as multiple - choice questions , multiple - select questions , fill - in - the - blank questions , etc . As long as the answer is the same as the standard answer , it is enough . For multiple - select questions and multiple - blank fill - in - the - blank questions , the candidate needs to answer all the corresponding options or blanks correctly to be considered correct .
4. Some answers may be expressed in different ways , such as some answers may be a mathematical expression , some answers may be a textual description , as long as the meaning expressed is the same . And some formulas are expressed in different ways , but they are equivalent and correct .
5. If the prediction is given with \\boxed { } , please ignore the \\boxed { } and only judge whether the candidate ' s answer is consistent with the standard answer.
Please judge whether the following answers are consistent with the standard answer based on the above criteria . Grade the predicted answer of this new question as one of :
A : CORRECT
B : INCORRECT
Just return the letters " A " or " B " , with no text around it .
Here is your task . Simply reply with either CORRECT , INCORRECT . Don ' t apologize or correct yourself if there was a mistake; we are just trying to grade the answer.
< Original Question Begin > : \n { question } \n < Original Question End > \n \n
< Gold Target Begin > : \n { answer } \n < Gold Target End > \n \n
< Predicted Answer Begin > : \n { prediction } \n < Predicted End > \n \n
Judging the correctness of candidates ' answers:
""" .strip()
2025-05-20 16:46:55 +08:00
cascade_evaluator = dict (
type = CascadeEvaluator ,
rule_evaluator = dict (
type = MATHVerifyEvaluator ,
) ,
llm_evaluator = dict (
2025-01-07 00:14:32 +08:00
type = GenericLLMEvaluator ,
prompt_template = dict (
type = PromptTemplate ,
template = dict (
2025-05-20 16:46:55 +08:00
begin = [
dict (
role = ' SYSTEM ' ,
fallback_role = ' HUMAN ' ,
prompt = " You are a helpful assistant who evaluates the correctness and quality of models ' outputs. " ,
)
] ,
2025-01-07 00:14:32 +08:00
round = [
2025-05-20 16:46:55 +08:00
dict ( role = ' HUMAN ' , prompt = GRADER_TEMPLATE ) ,
] ,
) ,
2025-01-07 00:14:32 +08:00
) ,
dataset_cfg = dict (
2025-05-20 16:46:55 +08:00
type = CustomDataset ,
path = ' opencompass/aime2025 ' ,
reader_cfg = aime2025_reader_cfg ,
2025-01-07 00:14:32 +08:00
) ,
judge_cfg = dict ( ) ,
dict_postprocessor = dict ( type = generic_llmjudge_postprocess ) ,
) ,
2025-05-20 16:46:55 +08:00
parallel = False ,
)
aime2025_eval_cfg = dict (
evaluator = cascade_evaluator ,
2025-01-07 00:14:32 +08:00
)
2025-05-20 16:46:55 +08:00
aime2025_datasets = [
2025-01-07 00:14:32 +08:00
dict (
2025-05-20 16:46:55 +08:00
type = CustomDataset ,
abbr = ' aime2025 ' ,
path = ' opencompass/aime2025 ' ,
reader_cfg = aime2025_reader_cfg ,
infer_cfg = aime2025_infer_cfg ,
eval_cfg = aime2025_eval_cfg ,
n = 1 ,
2025-01-07 00:14:32 +08:00
)
2025-05-20 16:46:55 +08:00
]